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https://doi.org/10.1590/0004-282X20190138 ARTICLE

ABSTRACT

The association between cognitive impairment and physical frailty has been studied in older adults. The criteria degree of frailty may be keys to associated cognitive impairment. Objective: To analyze the association between cognitive impairment and the criteria for frailty. Methods: We cross-sectionally examined data from 667 older adults (≥60 years of age) from a study entitled ‘Variables associated to cognition in elderly caregivers’ involving patients in an urban and rural primary healthcare center. We defined cognitive impairment based on different groups of scores on the Mini Mental State Examination, and defined frailty and prefrailty using the criteria by the Cardiovascular Health Study. We performed multinomial regression models to analyze the association between levels of frailty and cognitive impairment. Results: Similar proportions of women (54.8%) and men (45.2%) participated in the study (mean age: 71 years old). We found cognitive impairment, prefrailty and frailty in 34, 54, and 24% of the participants, respectively. Concomitant cognitive impairment and frailty was found in 13% of them. The chances of cognitive impairment increased up to 330% (Odds Ratio [OR]: 4.3; 95% confidence interval [95%CI] 2.4–7.7; p<0.001) among frail individuals, and 70% (OR: 1.7; 95%CI 1.0–2.8; p=0.033) among prefrail individuals compared to robust/non-frail individuals. After controlling for age, education, place of residence and functional dependence, slowness and fatigue criteria were significantly associated with cognitive impairment. Conclusion: Older adults with frailty have a greater likelihood of concomitant cognitive impairment than prefrail and robust older adults. The prevalence of cognitive impairment and frailty is consistent with data reported in literature. The present findings contribute to the investigation of cognitive frailty.

Keywords: older adults; cognitive dysfunction; frailty. RESUMO

A associação entre comprometimento cognitivo e fragilidade tem sida estudada em idosos e os critérios de fragilidade e níveis de fragilidade podem também apresentar influência na função cognitiva. Objetivo: Analisar a associação entre comprometimento cognitivo e os critérios de fragilidade em idosos. Métodos: O estudo analisou transversalmente dados de 667 idosos (≥60 anos) do estudo ‘Variables associated to cognition in elderly caregivers’ conduzido com usuários da atenção primária a saúde de áreas urbanas e rurais. Comprometimento cognitivo foi definido em função dos escores no Miniexame do Estado Mental baseado na escolaridade e a fragilidade e pré-fragilidade foi operacionalizada segundo os critérios do Cardiovascular Health Study. Foram realizados modelos de regressão multinominal para analisar a associação entre níveis de fragilidade e comprometimento cognitivo. Resultados: Proporções semelhantes de mulheres (54,8%) e homens (45,2%) participaram do estudo (média de idade: 71 anos). Comprometimento cognitivo, pré-fragilidade e fragilidade foram encontrados em 34, 54 e 24% dos participantes, respectivamente. Concomitante comprometimento cognitivo e fragilidade foi evidenciado em 13%. As chances de apresentar comprometimento cognitivo aumentaram em 330% (Odds Ratio [OR]: 4.3; intervalo de confiança de 95% [IC95%] 2.4–7.7; p<0.001) entre indivíduos frágeis e 70% (OR: 1.7; IC95% 1.0–2.8; p=0.033) entre indivíduos pré-frágeis em comparação com indivíduos robustos/não-frágeis. Após controle da idade, escolaridade, local de residência e dependência funcional, os critérios de lentidão e fadiga foram significativamente associados ao comprometimento cognitivo. Conclusão: Os idosos mais frágeis têm maior probabilidade de apresentar comprometimento cognitivo comparados a adultos idosos pré-frágeis ou robustos. A prevalência de comprometimento cognitivo e fragilidade é consistente com os dados relatados na literatura e fornece suporte para futuras investigações sobre a fragilidade cognitiva.

Palavras-chave: idoso; disfunção cognitiva; fragilidade.

Association between cognitive impairment and

criteria for frailty syndrome among older adults

Associação entre o comprometimento cognitivo e os critérios para a síndrome de

fragilidade em idosos

Allan Gustavo BRIGOLA1,2, Ana Carolina OTTAVIANI1, Danilo Henrique Trevisan CARVALHO3, Nathalia Alves

OLIVEIRA1, Érica Nestor SOUZA1, Sofia Cristina Iost PAVARINI4

1Universidade Federal de São Carlos, Programa de Pós-Graduação em Enfermagem, São Carlos SP, Brazil. 2University of East Anglia, Faculty of Medicine and Health Sciences, United Kingdom.

3Universidade Federal de São Carlos, Programa de Pós-Graduação em Fisioterapia, São Carlos SP, Brazil. 4Universidade Federal de São Carlos, Departamento de Gerontologia, São Carlos SP, Brazil.

Allan Gustavo BRIGOLA https://orcid.org/0000-0003-0265-4940; Ana Carolina OTTAVIANI https://orcid.org/0000-0003-4037-4587; Danilo Henrique Trevisan CARVALHO https://orcid.org/0000-0002-1089-5739; Nathalia Alves OLIVEIRA https://orcid.org/0000-0003-1665-8109; Érica Nestor SOUZA

https://orcid.org/0000-0002-7952-7643; Sofia Cristina Iost PAVARINI https://orcid.org/0000-0001-9359-8600

Correspondence: Allan Gustavo Brigola; The Queen’s Building, Faculty of Medicine and Health Sciences, University of East Anglia, Norwich Research Park,

NR4 7TJ, United Kingdom; E-mail: allanbrig@gmail.com

Support: This paper was supported by São Paulo Research Foundation (Fundação de Amparo à Pesquisa do Estado de São Paulo – FAPESP) grant number

#2013/26798-9; #2018/00265-8).

Conflict of interest: There is no conflict of interest to declare.

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A slight decrease in cognitive function is expected during the ageing process. However, cognitive impairment can occur when one’s performance regarding memory, judgment, lan-guage, and attention is lower than that expected for one’s age and educational level1,2. Cognitive impairment can be caused

by neurodegeneration, vascular problems and metabolic prob-lems. Nonetheless, chronic stress, depressive symptoms and anxiety can contribute to a poorer mental performance dur-ing old age3. Lately, the poor physical function, such as frailty,

is considered another strong factor linked to cognitive impair-ment, seen that these conditions share similar pathophysio-logical mechanisms on the cellular and systemic levels4,5.

Different theories and particular (but complementary) evaluations of frailty in older adults have contributed to the health care, to the comprehensive geriatric and gerontologi-cal assessment, and supported the interventions planning. The Cardiovascular Health Study (CHS) defined frailty as a geriatric syndrome that could be assessed using the mea-surement of five clinical criteria: unintentional weight loss, fatigue (exhaustion), muscle weakness, slow gait/slowness and low levels of physical activity6. More recently, Morley et

al. contributed to the definition of the clinical syndrome as a multiple-cause condition that leads to vulnerability, func-tional dependence, and death7.

Other frailty theories and measures are also useful to predict cognitive impairment8. However, a physical examination using

the CHS frailty clinical criteria6 may indicate changes in

cogni-tive functions. Systematic reviews and meta-analyses confirmed the existence of a strong link between physical and cognitive impairment5,9,10. Although there is evidence associating frailty

with cognitive impairment, a small number of studies on this subject have been conducted considering the five clinical crite-ria, individually, in low and middle-income countries.

In Brazil, an analysis of the FIBRA study described the criteria of slow gait speed (slowness) and low grip strength (weakness) as the strongest measures associated with

cog-nitive performance among older adults11. A further FIBRA

study analysis with 384 community-dwelling older adults confirmed that frailty and specific cognitive domains are linked, with a poorer performance as to time orientation and working memory prevalent among frail older adults12. Similar

findings were observed in 737 participants of a study con-ducted in Rio de Janeiro City13 and in a multi-centric Brazilian

study14. Older adults with frailty had consistently lower Mini

Mental State Examination (MMSE) scores compared to pre-frail and robust older adults13,14. A systematic review with

29,664 participants in 19 studies, which were mostly con-ducted in Latin America, found that memory is the main function affected in older adults with frailty, and slowness and weakness are the most prevalent frailty clinical criteria in cognitively impaired older adults15.

Despite the growing interest in investigating the asso-ciation between cognitive and physical status, further stud-ies should be conducted with older adults living in low and

middle-income countries. Therefore, the aim of the pres-ent study was to analyze the association between cognitive impairment and the clinical criteria for frailty syndrome. We hypothesized that some frailty clinical criteria are strongly associated with cognitive impairment in older adults. Additionally, we want to confirm whether frailty presents a close association with cognitive impairment, compared to prefrailty and robust older adults.

METHODS Participants

The present cross-sectional study is part of a study enti-tled “Variables associated with cognition in elderly care-givers” conducted by the Health and Ageing Group of Universidade Federal de São Carlos involving individuals registered in the Family Health Units of São Carlos City, São Paulo State, Brazil. São Carlos is in the Southeastern region of the country and has an estimated population of 221,950 resi-dents, among whom 13% were aged 60 or older, according to the 2010 Brazilian census16.

The study was conducted between April and December of 2014. The participant selection process is described else-where3,17,18, but a brief description follows. All

community-dwelling older adults (age≥60 in Brazil, as defined by the World Health Organization) registered at 18 primary healthcare cen-ters (n=1,188) in São Carlos City, Brazil, were contacted in per-son and invited to participate in the survey. Individuals with auditory, visual or language limitations that could constitute barriers to the data collection instruments were excluded. The response rate was 59.1%. The survey was conducted with 351 dwelling older caregivers and 351 community-dwelling older non-caregivers (total: 702 individuals) regis-tered with primary care services in rural and urban regions. For the present study, 667 individuals were included, and the single criterion for entry was having complete data available on demographics, cognitive and frailty status.

The present study was approved by the Human Research Ethics Committee of Universidade Federal de São Carlos (certificate number: 517.182) and all participants signed an informed consent. Household interviews were conducted by trained professionals in the fields of Gerontology and Nursing.

Variables and evaluations

1) Demographic characteristics: gender (male, female), age (continuous and age range), years of education (continuous and education level), retirement (yes, no), place of residence (rural, urban), and ethnicity (black/brown, white and others).

2) Activities of daily living (ADL): Functioning was assessed using the Lawton and Brody Scale to determine the degree of independence on basic activities, such as performing house-work, handling money, using the telephone, administering

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medications, traveling, shopping and preparing full meals. The total score ranges from seven (complete dependence) to 21 (complete independence), with intermediate scores (8 to 20 points) indicative of partial dependence19,20.

3) Cognitive impairment: Cognitive screening was per-formed using the Mini Mental State Examination (MMSE), the score of which ranges from 0 to 3021. The cutoff points

were adjusted for different levels of formal education: <26 for those with ≥nine years of schooling; <24 for those with five to eight years of schooling, <22 for those with one to four years of schooling, and <17 for illiterate individuals22. Addenbrooke’s

Cognitive Examination - Revised (ACE-R; score: 0-100) was also used to assess global cognition23,24.

4) The frailty syndrome and criteria: The five frailty clinical criteria of the Cardiovascular Health Study were considered: unintentional weight loss in the past year, fatigue in the past week, muscle weakness, slowness and decreased physical activ-ity levels when compared to the previous year. Unintentional weight loss in the past year, fatigue in the past week and decreased physical activity level were self-declared. Muscle weakness was assessed using a dynamometer and slowness, with the time required to walk 4.6 meters. Based on Fried’s phe-notype, the number of criteria was used to determine the level of frailty: frail (from three to five criteria), prefrail (one or two crite-ria) and robust/non-frail (negative for all five critecrite-ria)6.

Statistical analysis

The Statistical Package for the Social Sciences - SPSS soft-ware, version 21.0 program was used for the data analysis. Descriptive statistics were performed to characterize the overall sample and the sample stratified by cognitive status. The values for frequency (n), percentage (%), mean and standard deviation (±) were calculated. The independent t-test was used to com-pare means and the chi-square test was used to comcom-pare cat-egorical variables between groups according to gender (Table 1). The prevalence of simultaneous cognitive impairment and frailty was estimated with 95% confidence intervals (95%CI). One-way ANOVA was used with Tukey’s post hoc test for com-parisons of MMSE scores between frailty levels (Figure 1).

Multinomial regression models were run to analyze the associations between frailty syndrome/criteria (independent variable) and cognitive impairment (dependent variable). Crude models were run to determine associations between age (continuous), education (continuous), gender (reference: male), place of residence (reference: rural), degree of depen-dence on ADL (reference: independent), unintentional weight loss, fatigue, weakness, slowness, low physical activity (refer-ence: absence of criteria), prefrailty and frailty (refer(refer-ence: no frailty). Variables with a p-value≤0.20 were selected for the adjusted regression remodel. The first model (Table 2) included all criteria as controlling variables in the same model. Prefrailty (Model B) and frailty (Model C) were incorporated indepen-dently in adjusted models. Associations with a p-value≤0.05 were considered statistically significant.

RESULTS

Among the 702 participants, 35 were excluded from the analysis due the missing data on education, cognitive and frailty status. The sample consisted of similar proportions of women (54.8%) and men (45.2%). Women tended to be younger (mean difference: -1.6 years; p=0.012), more indepen-dent regarding ADL (w: 33.6% vs. m: 8%) and fewer were retired compared to men (w: 64.5% vs. m: 91.7%). Women also had higher proportions of slowness (w: 27% vs. m: 18.3%) and low physical activity compared to men (w: 54.9% vs. m: 47.2%).

No differences between women and men were found regarding the prevalence of cognitive impairment (Table 1). Cognitively impaired older adults tended to be older (mean difference: 2.8 years; p<0.001) than those with normal cog-nition. Regarding performance on ADL, 15.5% of cognitively impaired and 25.4% of older adults with normal cognitive were completely independent. Regarding frailty, except for unintentional weight loss, all criteria were more prevalent in older adults with cognitive impairment.

The prevalence of simultaneous condition cognitive impairment and frailty was 13.2% (95%CI 11–16) and the prevalence of concurrent cognitive impairment and pre-frailty was 16.8 (95%CI 14–20). Figure 1 displays the MMSE scores among the levels of frailty. The mean MMSE score was 23.9±3.8 among robust individuals. Prefrail individuals had a poorer MMSE score compared to robust individuals (mean difference: -1.5; p<0.01), and the mean difference in the frail group compared to robust individuals was -5.2 (p<0.01).

As shown in Table 2 and Figure 2, only fatigue/exhaustion and slowness remained associated with cognitive impairment in the model controlled for age, education, place of residence, dependence on ADL and other frailty criteria. Individuals with fatigue were 1.1 times more likely to exhibit cognitive impairment, when compared to those without this criterion. Moreover, individuals with slowness were 2.6 times more likely to exhibit cognitive impairment (Table 2; Model A). Frailty was more linked to cognitive impairment than prefrailty. The chances of cognitive impairment increased up to 330% in indi-viduals with frailty (Model B) and 70% in indiindi-viduals with pre-frailty, when compared to robust individuals (Model C).

DISCUSSION

One third of the participants presented cognitive impair-ment, one quarter was frail, and one half was prefrail. The anal-yses confirmed that frailty was strongly associated with cogni-tive impairment and fatigue, and that slowness seemed to be the clinical criteria associated with cognitive impairment.

The prevalence of cognitive impairment in the popula-tion-based SABE study in Brazil was 7.9%25. In another study,

the proportion of elderly people with some degree of

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frailty were found in other middle-income and low-income countries. In studies conducted in Colombia, the prevalence of frailty was 12.2%27,28. In Taiwan, the prevalence of frailty

and prefrailty was 4.9% and around 40%, respectively29. A

sys-tematic review analyzing 19 studies held in Latin America found that the prevalence of cognitive impairment ranged from 16 to 25%, and frailty was present in 10% of the popula-tion15. The proportion of cognitive impairment in studies may

vary due to the profile of older adults in the sample, as well as the measures and cut-off points employed. In the present study, most participants had less than five years of schooling

and the full version of MMSE was used. Moreover, clinical frailty criterion of low physical activity was more prevalent, which can be explained by the demographics, characterized as female and older, which are conditions associated with physical inactivity30.

In a study involving 2,375 Chinese older adults, the esti-mated prevalence of frailty with cognitive impairment was 1.8% and the estimated prevalence of prefrailty with

cogni-tive impairment was 8.9%31. Half of the population had

com-pleted high school and scored significantly higher on the MMSE. Moreover, 61 participants were categorized with

Table 1. Characterization of participants stratified by cognitive status. São Carlos City, Brazil, 2014.

Characteristic Total (n=667) Cognitively impaired (n=226) Cognitively unimpaired (n=441) p-value

Male 301 (54.8) 96 (42.5) 205 (46.5) 0.184b Female 366 (57.8) 130 (57.5) 236 (53.5) Age, mean (±) 71.3 (7.8) 73.2 (8.9) 70.4 (7.0) <0.001a 60–69 y.o., n (%) 328 (49.2) 95 (42.0) 233 (52.8) REF 70–79 y.o., n (%) 234 (35.1) 78 (34.5) 156 (35.4) 0.155b ≥80 y.o., n (%) 105 (15.7) 53 (23.5) 52 (11.8) <0.001b Education, mean (±) 3.6 (3.5) 3.1 (3.5) 3.9 (3.5) 0.006a Illiterate, n (%) 147 (22.0) 56 (24.8) 91 (20.6) 0.477b 1–4 y, n (%) 395 (59.2) 133 (58.8) 262 (59.4) 0.379b 5–8 y, n (%) 62 (9.3) 14 (6.2) 48 (10.9) 0.065b ≥9 y, n (%) 63 (9.4) 23 (10.2) 40 (9.1) REF Retired, n (%) 512 (76.7) 180 (79.6) 332 (75.3) 0.121b

Rural residence, n (%) 166 (24.9) 48 (21.2) 118 (26.8) REF

Urban residence, n (%) 501 (75.1) 178 (78.8) 323 (7.2) 0.070b

Black/Brown, n (%) 200 (30.0) 82 (36.3) 118 (26.8) NA

White, n (%) 461 (69.1) 144 (63.7) 317 (71.9) NA

Others, n (%) 6 (0.9) 6 (1.4) NA

Lawton ADL Scale, mean (±) 16.8 (4.0) 14.7 (4.6) 17.8 (3.1) <0.001a

Independent, n (%) 147 (22.0) 35 (15.5) 112 (25.4) REF

Partially dependent, n (%) 493 (73.9) 169 (74.8) 324 (73.5) 0.002b*

Completely dependent, n (%) 27 (4.0) 22 (9.7) 5 (1.1)

ACE-R, mean (±) 58.6 (20.7) 41.7 (18.4) 67.3 (16.0) <0.001a

MMSE, mean (±) 21.8 (5.2) 16.8 (4.8) 24.4 (3.3) <0.001a

Unintentional weight loss, n (%) 165 (24.7) 65 (28.8) 100 (22.7) 0.0522

Fatigue, n (%) 169 (25.3) 87 (38.5) 82 (18.6) <0.001b

Weakness, n (%) 268 (30.2) 116 (51.3) 152 (34.5) <0.001b

Slowness, n (%) 154 (23.1) 90 (39.8) 64 (14.5) <0.001b

Low physical activity, n (%) 343 (51.4) 133 (58.8) 210 (47.6) 0.004b

Robustness, n (%) 140 (21.0) 26 (11.5) 114 (25.9) REF

Pre-frailty, n (%) 363 (54.4) 112 (49.6) 251 (56.9) 0.003b

Frailty, n (%) 164 (24.6) 88 (38.9) 76 (17.2) <0.001b

Cognitive impairment+frailty, n (%) 88 (13.2) Cognitive impairment+prefrailty, n (%) 112 (16.8)

aSudent’s t-test; bchi-square; REF: reference category; NA: variable not compared; MMSE: Mini Mental State Examination; ACE-R: Addenbrooke’s Cognitive

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frailty, using the frailty phenotype criteria, and the prevalence of cognitive frailty increased fivefold among individuals aged 75 and older32.

A Japanese study involving 4,207 participants found a 2.7% combined prevalence of MCI and frailty (3% in women and 2.4% in men). This combination increased to 4.4% among

individuals with a low level of schooling. The regression anal-ysis adjusted by gender, age and education level showed that older adults with frailty had a 100% increased chance of pre-senting MCI33. In a study involving Chilean older adults,

indi-viduals with frailty had 3.93 times more chance of presenting MCI34. A study conducted in Brazil, with 51 prefrail and frail

older adults used a similar MMSE cut-off. Frailty was treated as the dependent variable and global cognition explained up to 19% of the variation in the syndrome35. Furthermore, a

lon-gitudinal study demonstrated that 27.8% of non-frail individ-uals will not experience cognitive decline, whereas only 2% of frail older adults improve or stabilize their cognitive status8.

Frailty criteria also seem to be associated with cognitive impairment. A longitudinal survey involving 2,817 Japanese men showed that individual frailty factors were associated with a 16 to 18% reduction in their global cognitive status36.

In another study, slowness and physical exhaustion ( fatigue)

were associated with a reduction in global cognition37.

Slowness is the strongest frailty criterion associated to cog-nitive impairment, and this association has been frequently seen in literature. Additionally, in this study with 4,649 par-ticipants aged ≥50, prefrail individuals (n=1,444) had lower MMSE scores than robust individuals (n=3,155), and frail individuals (n=90) had lower MMSE scores compared to the

other two groups37. A study involving 395 American older

adults found than an increase in walking speed was associ-ated with a subsequent improvement in cognitive perfor-mance, especially recalling38. This finding underscores the Table 2. Crude and adjusted regression models of association between criteria for frailty (Model A), prefrailty (Model B), frailty (Model C), and cognitive impairment (n=667). São Carlos City, Brazil, 2014.

Variables Crude model Adjusted model

OR 95%CI p-value OR 95%CI p-value

Model A

No Unintentional weight loss (ref) 1.0 1.0

Unintentional weight loss 1.3 0.9–1.9 0.085 0.9 0.6–1.4 0.877

No Fatigue (ref) 1.0 1.0 Fatigue 2.7 1.9–3.9 <0.001 2.1 1.4–3.2 <0.001 No Weakness (ref) 1.0 1.0 Weakness 2.0 1.4–2.7 <0.001 1.3 0.9–1.9 0.143 No Slowness (ref) 1.0 1.0 Slowness 3.8 2.6–5.6 <0.001 2.6 1.7–4.0 <0.001

No Low physical activity (ref) 1.0 1.0

Low physical activity 1.5 1.1–2.1 0.006 1,2 0.8–1.8 0.190

Model B Non-frailty (ref) 1.0 1.0 Prefrailty 1.9 1.2–3.1 0.006 1.7 1.0–2.8 0.033 Model C Non-frailty (ref) 1.0 1.0 Frailty 5.0 3.0–8.5 <0.001 4.3 2.4–7.8 <0.001

p-values in bold: statistically significant. For each model (A, B, C), age and education (continuous), gender (ref: male), setting (ref: rural), and ADL performance (ref: independent) were controlling variables.

Figure 1. Box plot of performance on Mini Mental State Examination among robust, older adults with pre-frailty and frailty (n=667). São Carlos City, Brazil, 2014.

**p≤0.01. MMSE: Mini Mental State Examination.

MMSE scor

es

Frailty level (Fried’s Phenotype)

Frail Pre-fr ail Robus t 10 ** 20 0 30 ** **

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importance of measuring gait speed and other components of frailty to identify older adults at risk of dysfunctional cog-nition and its determinants39,40.

In Brazil, the FIBRA study conducted in a low-income community used the same MMSE cut-off as that used in the present study and found that weakness was associated with global cognitive impairment, whereas slowness was specifi-cally associated with a poorer performance regarding verbal fluency and the clock drawing test11.

Some studies suggest biological pathways that may occur in both cognitive impairment and frailty. These mecha-nisms involve markers, such as sociodemographic clinical, inflammatory/immunity, and laboratorial characteristics, as well as proteins, metabolism/oxidative stress and genet-ics. Sociodemographic factors include advanced age, female gender, widowhood, low formal education and financial income5,41. Clinical factors, besides others, include

cardio-vascular conditions (diabetes, dyslipidemias and hyperten-sion), nutritional deficiencies (malnutrition and vitamin D deficiency), functional dependence, hormonal dysregulation (reduction in testosterone and insulin resistance), inflam-mation and neurotoxic accumulation of the protein beta-amyloid in the brain, loss of neurons of the substantia nigra, symptoms of depression, use of medications and other drugs, lifestyle and worse perception of health5,41.

The investigation of shared mechanisms in physiological conditions is a new field of study, which limits hypothesizing

the pathways of clinical frailty criteria and the decline in cog-nitive functioning, despite the fact that the outcomes are known. Both frailty and cognitive impairment are risk factors for future adverse outcomes, such as dementia, disability, hospitalization and death. These outcomes have been con-firmed in Brazilian and non-Brazilian older adults42,43,44,45.

The major limitation of the present study was the non-evaluation of dementia, which may affect the interpretation of results. The cross-sectional study design also limited us from knowing causal effects. On the other hand, one of the strengths of the study was the use of the MMSE with differ-ent cutoff points based on education level, which lends cred-ibility to the assessment of cognition among the participants.

In conclusion, older adults with frailty scored lower on the MMSE than those individuals with prefrailty or robust-ness. Moreover, the prevalence of cognitive impairment, frailty and prefrailty in the present sample is consistent with data reported in literature. The frailty clinical criteria fatigue and slowness were associated to cognitive impairment; slow-ness seems to be the strongest criteria associated with this condition. The present findings contribute to the investiga-tion of cognitive frailty in Brazil.

ACKNOWLEDGMENTS

We thank all the older adults who participated in the study.

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